Sequential Skip Prediction with Few-shot in Streamed Music Contents

24 Jan 2019  ·  Sungkyun Chang, Seungjin Lee, Kyogu Lee ·

This paper provides an outline of the algorithms submitted for the WSDM Cup 2019 Spotify Sequential Skip Prediction Challenge (team name: mimbres). In the challenge, complete information including acoustic features and user interaction logs for the first half of a listening session is provided. Our goal is to predict whether the individual tracks in the second half of the session will be skipped or not, only given acoustic features. We proposed two different kinds of algorithms that were based on metric learning and sequence learning. The experimental results showed that the sequence learning approach performed significantly better than the metric learning approach. Moreover, we conducted additional experiments to find that significant performance gain can be achieved using complete user log information.

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Datasets


Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Sequential skip prediction MSSD Teacher mean average accuracy 84.9 # 1
Sequential skip prediction MSSD seq1HL (2-stack) mean average accuracy 63.7 # 2

Methods